| Literature DB >> 30399162 |
Christopher P Hurt1, Donald H Lein1, Christian R Smith2, Jeffrey R Curtis3, Andrew O Westfall4, Jonathan Cortis5, Clayton Rice5, James H Willig6.
Abstract
INTRODUCTION: Walking speed has been associated with many clinical outcomes (e.g., frailty, mortality, joint replacement need, etc.). Accurately measuring walking speed (stride length x step count/time) typically requires significant clinician/staff time or a gait lab with specialized equipment (i.e., electronic timers or motion capture). In the present study, our goal was to measure "step count" via smartphones through novel software and to compare with step tracking software that come standard with iOS and Android smartphones as a first step in walking speed measurement.Entities:
Mesh:
Year: 2018 PMID: 30399162 PMCID: PMC6219786 DOI: 10.1371/journal.pone.0206828
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1The interface for modifying shake service parameters is shown.
The shake threshold relates to the amplitude required to register as an event and shake timeout which provided a window where a single event could be counted.
Fig 2Calibration of Shake Algorithm across normal (2a) and slow (2b) speeds and models (name type) to determine the best fit to the observed step count line. For slow speed (2a.) 1.5/500 (sensitivity/refresh time) achieved the minimal step count difference from the observed step count (1.8 steps). For normal speed (2b) 2.5/450 (sensitivity/refresh time) achieved the minimal step count difference from the observed step count (1.4 steps).
Step difference from observed step count for the iOS smartphone for different speeds (slow, fast) and distances (6m, 10m, 20m) and GEE adjusted negative binomial regression model of absolute step difference.
| Slow Speed | P-value | Normal Speed | P-value | |||
|---|---|---|---|---|---|---|
| Shake | Native Software | Shake | Native Software | |||
| 2.16±1.97 | 8.15±4.48 | 1.93±1.60 | 5.44±3.82 | |||
| 2.85±2.77 | 5.38±4.84 | 2.48±2.19 | 2.94±3.37 | 0.188 | ||
| 5.22±5.22 | 7.41±7.89 | 4.32±3.87 | 5.24±3.14 | 0.112 | ||
1. Absolute off, no directionality, step difference (either over or under) observed step count.
2. Slow speed is < 1 meter/second
3. P-values are from a GEE adjusted (participant level) negative binomial regression model of absolute step difference.
4. Normal speed is >1 meter/second
Step difference from observed step count for the Android smartphone for different speeds (slow, fast) and distances (6m, 10m, 20m) and GEE adjusted negative binomial regression model of absolute step difference.
| Slow Speed | P-value | Normal Speed | P-value | |||
|---|---|---|---|---|---|---|
| Shake | Native Software | Shake | Native Software | |||
| 2.15±1.92 | 2.92±2.88 | 1.79±1.61 | 1.85±2.28 | 0.870 | ||
| 2.52±2.50 | 2.89±3.49 | 0.374 | 2.03±2.28 | 1.47±1.60 | 0.066 | |
| 4.34±4.57 | 3.01±3.78 | 3.47±4.41 | 1.35±1.35 | |||
1. Absolute off, no directionality, step difference (either over or under) observed step count.
2. Slow speed is < 1 meter/second
3. P-values are from a GEE adjusted (participant level) negative binomial regression model of absolute step difference.
4. Normal speed is >1 meter/second